Developing an evidence-based approach to quality control

Clin Biochem. 2023 Apr:114:39-42. doi: 10.1016/j.clinbiochem.2023.01.011. Epub 2023 Feb 1.

Abstract

Effective Quality Control remains one of the pillars of Clinical Biochemistry. An understanding of the possible analytical errors that may occur, how to detect them efficiently and how to prevent them from causing patient harm are critical components of a Quality System. For some time, there have been questions about the theoretical basis of the models used to describe and detect analytical error. The current theory recognises two types of error, systematic and random and a system based on sampling the analytical process using a synthetic material to detect these errors. However, there are at least two other errors that are present. One is related to the QC material and the other, irregular errors. In this Opinion Piece, some of the underlying assumptions of Quality Control systems are described and analysed.

Keywords: Error detection; Patient-based real-time quality control; Quality control strategy; Sigma metric.

MeSH terms

  • Biochemistry
  • Humans
  • Quality Control*